Evaluating farmers’ credit risk: A decision combination approach based on credit feature

IF 0.6 Q4 BUSINESS, FINANCE International Journal of Financial Engineering Pub Date : 2022-04-30 DOI:10.1142/s2424786322500153
N. Chai, Baofeng Shi
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引用次数: 1

Abstract

The existing default discrimination models based on evaluation indicators are difficult to achieve higher credit risk identification performance of farmers’ default status under the situation of insufficient credit information and low correlation between indicators and default risk. Those models are difficult to find out the fundamental causes of farmers’ default risk. A credit risk discrimination model based on credit features strongly with default status is established to evaluate the farmer’s credit risk. Term frequency inverse document frequency and sentiment dictionary analysis method are used to quantify long text indicators, then the K-means method is used to Boolean the numerical data. The APRIORI algorithm is used to mine the credit features strongly associated with the default status. Finally, the default status of farmers is judged based on those credit features. The model is detailed using actual bank data from 2044 farmers within China. According to the five-evaluation criterion of AUC, F1-score, Type II-error, Balance error rate and G-mean, the empirical results show that the ability of the credit risk discrimination model with credit features is higher than that of the model based on evaluation indicators. This finding provides a new idea for commercial banks to measure the default risk of farmers, and provides a reference for the formulation of strategies to enhance farmers’ credit.
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农户信用风险评估:基于信用特征的决策组合方法
在信用信息不充分、指标与违约风险相关性较低的情况下,现有的基于评价指标的违约判别模型难以实现对农户违约状况较高的信用风险识别性能。这些模型很难找出农民违约风险的根本原因。建立了一个基于强违约状态信用特征的农户信用风险判别模型,对农户信用风险进行评估。采用词频逆文档频率和情感词典分析法对长文本指标进行量化,然后采用k均值法对数值数据进行布尔化处理。使用APRIORI算法挖掘与默认状态强关联的信用特征。最后,根据这些信用特征判断农民的违约状况。该模型使用了来自中国2044名农民的实际银行数据。根据AUC、F1-score、Type -error、Balance错误率和G-mean 5个评价标准,实证结果表明,基于信用特征的信用风险判别模型的判别能力高于基于评价指标的模型。这一发现为商业银行衡量农民违约风险提供了新的思路,也为制定提高农民信用的策略提供了参考。
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